A Spatio-Temporal Neural Network Forecasting Approach for Emulation of
Firefront Models
- URL: http://arxiv.org/abs/2206.08523v1
- Date: Fri, 17 Jun 2022 03:11:18 GMT
- Title: A Spatio-Temporal Neural Network Forecasting Approach for Emulation of
Firefront Models
- Authors: Andrew Bolt, Carolyn Huston, Petra Kuhnert, Joel Janek Dabrowski,
James Hilton, Conrad Sanderson
- Abstract summary: We propose a dedicated-temporal neural network based framework for model emulation.
The proposed approach can approximate forecasts at fine spatial and temporal resolutions that are often challenging for neural network based approaches.
Empirical experiments show good agreement between simulated and emulated firefronts, with an average Jaccard score of 0.76.
- Score: 11.388800758488314
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Computational simulations of wildfire spread typically employ empirical
rate-of-spread calculations under various conditions (such as terrain, fuel
type, weather). Small perturbations in conditions can often lead to significant
changes in fire spread (such as speed and direction), necessitating a
computationally expensive large set of simulations to quantify uncertainty.
Model emulation seeks alternative representations of physical models using
machine learning, aiming to provide more efficient and/or simplified surrogate
models. We propose a dedicated spatio-temporal neural network based framework
for model emulation, able to capture the complex behaviour of fire spread
models. The proposed approach can approximate forecasts at fine spatial and
temporal resolutions that are often challenging for neural network based
approaches. Furthermore, the proposed approach is robust even with small
training sets, due to novel data augmentation methods. Empirical experiments
show good agreement between simulated and emulated firefronts, with an average
Jaccard score of 0.76.
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